Exploring the Complementarity of Audio-Visual Structural Regularities for the Classification of Videos into TV-Program Collections

G. Sargent, P. Hanna, H. Nicolas, F. Bimbot
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引用次数: 3

Abstract

This article proposes to analyze the structural regularities from the audio and video streams of TV-programs and explore their potential for the classification of videos into program collections. Our approach is based on the spectral analysis of distance matrices representing the short-and long-term dependancies within the audio and visual modalities of a video. We propose to compare two videos by their respective spectral features. We appreciate the benefits brought by the two modalities on the performances in the context of a K-nearest neighbor classification, and we test our approach in the context of an unsupervised clustering algorithm. These evaluations are performed on two datasets of French and Italian TV programs.
视像分类为电视节目集的视听结构规律互补性探讨
本文提出从电视节目的音视频流中分析其结构规律,探讨其在将视频分类为节目集方面的潜力。我们的方法是基于距离矩阵的频谱分析,表示视频的音频和视觉模式中的短期和长期依赖关系。我们建议通过各自的光谱特征来比较两个视频。我们意识到这两种模式在k近邻分类环境下对性能带来的好处,并且我们在无监督聚类算法的环境中测试了我们的方法。这些评估是在法语和意大利语电视节目的两个数据集上进行的。
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